Intelligent detection methods are gradually being integrated into power grid inspection work. There are many weather factors in the process of intelligent inspection, which can affect data acquisition. In order to address the problems of distortion and imbalanced contrast in images obtained in foggy weather, this paper proposes an improved DehazeNet algorithm. The algorithm introduces parallel convolutional layers conv_a and divides reshape_a to improve feature extraction effectiveness and retain corresponding features while increasing receptive field. Multi-scale image feature extraction is achieved through four convolutional layers of different sizes using the parallel convolutional structure. The bilateral linear rectification unit is used as the activation function to effectively estimate the transmission rate. Experimental results show that the improved DehazeNet algorithm has a 5.5% increase in PSNR, 0.02% increase in SSIM, and 6% increase in information entropy. The algorithm in this paper has better haze removal effect compared to the DehazeNet algorithm.